Abstract

Rapidly advancing airborne laser scanning technology has become greatly useful to estimate tree- and stand-level variables at a large scale using high spatial resolution data. Compared with that of ground measurements, the accuracy of the inferred information of diameter at breast height (DBH) from a remotely sensed database and the models developed with traditional regression approaches (e.g., ordinary least square regression) may not be sufficient. Thus, this regression approach is no longer appropriate to develop accurate models and predict DBH from remotely sensed-related variables because DBH is subject to the random effects of forest stands. This study developed a generalized nonlinear mixed-effects DBH estimation model from remotely sensed imagery data. The light detection and ranging (LiDAR)-derived stand canopy density, crown projection area, and tree height were used as predictors in the DBH estimation model. These variables can be more readily measured over an extensive forest area with higher accuracy compared to the conventional field-based methods. The airborne LiDAR data for a total of 402 Picea crassifolia Kom trees on a sample plot that were divided into 16 sub-sample plots and located in the most important distribution region of western China were used. The leave-one sub-sample plot-out cross-validation method was applied to evaluate the model’s prediction accuracy. The results indicated that the random effects of the sub-sample plot on the prediction of DBH were large and their inclusion into the DBH model significantly improved the prediction accuracy. The prediction accuracy of the proposed model at the mean (M) response was also substantially improved relative to the accuracy obtained from the base model. Among several tree selection alternatives evaluated, a sample size of the two largest trees per sub-sample plot used in estimating the random effects showed a significantly higher accuracy compared to other sampling alternatives. This sample size would balance both the measurement cost and potential prediction errors. The nonlinear mixed-effects DBH estimation model at the M response can also be applied if obtaining the estimates of individual tree DBH with a relatively lower cost, and a lower prediction accuracy was the purpose of the study.

Highlights

  • Tree diameter at breast height (DBH) is an important characteristic and can be directly measured on the ground

  • Relative to Equation (6), Equation (7) is more simplified with only four parameters, and it was chosen as a basic nonlinear model to build the generalized nonlinear mixed-effects (NLME) DBH estimation models based on the light detection and ranging (LiDAR)-derived predictors

  • We developed a generalized nonlinear mixed-effects DBH estimation model for Picea crassifolia Kom trees in western China

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Summary

Introduction

Tree diameter at breast height (DBH) is an important characteristic and can be directly measured on the ground It is an indicator of tree vigor and used to describe stand structure, estimate tree volume and biomass, and select sample trees in a forest inventory [1,2,3,4]. In the absence of DBH measurements, stem volume, and taper equations, tree growth and biomass equations cannot be used to predict these characteristics accurately [8]. This information is highly necessary to update the inventory databases, which are based on one-off or periodical ALS, due to the high cost of scanning the same forest area every year. An accurate estimation of DBH as a critical predictor becomes very important

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